Robust Visual Tracking via Rank-Constrained Sparse Learning

B. Bozorgtabar, Roland Göcke
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Abstract

In this paper, we present an improved low-rank sparse learning method for particle filter based visual tracking, which we denote as rank-constrained sparse learning. Since each particle can be sparsely represented by a linear combination of the bases from an adaptive dictionary, we exploit the underlying structure between particles by constraining the rank of particle sparse representations jointly over the adaptive dictionary. Besides utilising a common structure among particles, the proposed tracker also suggests the most discriminative features for particle representations using an additional feature selection module employed in the proposed objective function. Furthermore, we present an efficient way to solve this learning problem by connecting the low-rank structure extracted from particles to a simpler learning problem in the devised discriminative subspace. The suggested way improves the overall computational complexity for the high-dimensional particle candidates. Finally, in order to achieve a more robust tracker, we augment the sparse representation of particles with adaptive weights, which indicate similarity between candidates and the dictionary templates. The proposed approach is extensively evaluated on the VOT 2013 visual tracking evaluation platform including 16 challenging sequences. Experimental results compared to state-of-the-art methods show the robustness and effectiveness of the proposed tracker.
基于秩约束稀疏学习的鲁棒视觉跟踪
本文提出了一种改进的基于粒子滤波的视觉跟踪低秩稀疏学习方法,我们将其称为秩约束稀疏学习。由于每个粒子可以由自适应字典中的基的线性组合稀疏表示,我们通过约束粒子稀疏表示在自适应字典上的秩来利用粒子之间的底层结构。除了利用粒子之间的共同结构外,所提出的跟踪器还使用所提出的目标函数中使用的附加特征选择模块为粒子表示提供最具区别性的特征。此外,我们提出了一种有效的方法,将从粒子中提取的低秩结构连接到设计的判别子空间中的更简单的学习问题。该方法提高了高维候选粒子的整体计算复杂度。最后,为了获得更鲁棒的跟踪器,我们用自适应权值来增强粒子的稀疏表示,这表明候选粒子与字典模板之间的相似性。该方法在VOT 2013视觉跟踪评估平台上进行了广泛的评估,包括16个具有挑战性的序列。实验结果表明,该跟踪器具有较好的鲁棒性和有效性。
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